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wle (version 0.9-91)

wle.lm.summaries: Accessing Linear Model Fits for wle.lm

Description

All these functions are methods for class wle.lm or summary.wle.lm.

Usage

"coef"(object, ...) "formula"(x, ...) "fitted"(object, ...) "model.frame"(formula, data, na.action, ...) "summary"(object, root="ALL", ...) "summary"(object, root=1, ...)
"print"(x, digits = max(3, getOption("digits") - 3), ...)
"print"(x, digits = max(3, getOption("digits") - 3), signif.stars= getOption("show.signif.stars"), ...)
"print"(x, digits = max(3, getOption("digits") - 3), signif.stars= getOption("show.signif.stars"), ...)

Arguments

object
an object of class wle.lm.
x
an object of class wle.lm or summary.wle.lm.
formula
a model formula
data
data.frame, list, environment or object coercible to data.frame containing the variables in formula.
na.action
how NAs are treated. The default is first, any na.action attribute of data, second a na.action setting of options, and third na.fail if that is unset. The ``factory-fresh'' default is na.omit.
root
the root to be printed, in summary.wle.lm it could be "ALL", all the roots are printed, or a vector of integers.
digits
number of digits to be used for most numbers.
signif.stars
logical; if TRUE, P-values are additionally encoded visually as ``significance stars'' in order to help scanning of long coefficient tables. It defaults to the show.signif.stars slot of options.
...
additional arguments.

Value

The function summary.wle.lm (the summary.wle.lm.root do the same for just one selected root) computes and returns, for each selected root, a list of summary statistics of the fitted linear model given in object, using the components (list elements) "call" and "terms" from its argument, plus
residuals
the weighted residuals, the usual residuals rescaled by the square root of the weights given by wle.lm.
coefficients
a $p x 4$ matrix with columns for the estimated coefficient, its standard error, weighted-t-statistic and corresponding (two-sided) p-value.
sigma
the square root of the estimated variance of the random error.
df
degrees of freedom, a 3-vector $(p, \sum{weights} - p, p*)$.
fstatistic
a 3-vector with the value of the weighted-F-statistic with its numerator and denominator degrees of freedom.
r.squared
$R^2$, the ``fraction of variance explained by the model''.
adj.r.squared
the above $R^2$ statistic ``adjusted'', penalizing for higher $p$.
root
the label of the root reported.

Details

print.summary.wle.lm and print.summary.wle.lm.root tries formatting for each root the coefficients, standard errors, etc. and additionally gives ``significance stars'' if signif.stars is TRUE.

The generic accessor functions coefficients, fitted.values, residuals and weights can be used to extract various useful features of the value returned by wle.lm.

See Also

wle.lm a function for estimating linear models with normal distribution error and normal kernel, plot.wle.lm for plot method.

Examples

Run this code
library(wle)
# You can find this data set in:
# Hawkins, D.M., Bradu, D., and Kass, G.V. (1984). 
# Location of several outliers in multiple regression data using
# elemental sets. Technometrics, 26, 197-208.
#
data(artificial)

result <- wle.lm(y.artificial~x.artificial,boot=40,group=6,num.sol=3)

#summary only for the first root
summary(result,root=1)
#summary for all the roots
summary(result,root="ALL")

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